Effective speaker adaptations for speaker verification

Sungjoo Ahn, Sunmee Kang, Hanseok Ko
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引用次数: 7

Abstract

This paper concerns effective speaker adaptation methods to solve the over-training problem in speaker verification, which frequently occurs when modeling a speaker with sparse training data. While various speaker adaptations have already been applied to speech recognition, these methods have not yet been formally considered in speaker verification. This paper proposes speaker adaptation methods using a combination of maximum a posteriori (MAP) and maximum likelihood linear regression (MLLR) adaptations, which are successfully used in speech recognition, and applies to speaker verification. Our aim is to remedy the small training data problem by investigating effective speaker adaptations for speaker modeling. Experimental results show that the speaker verification system using a weighted MAP and MLLR adaptation outperforms that of the conventional speaker models without adaptation by a factor of up to 5 times. From these results, we show that the speaker adaptation method achieves significantly better performance even when only small training data is available for speaker verification.
有效的说话人适应说话人验证
本文研究了有效的说话人自适应方法,以解决使用稀疏训练数据建模说话人时经常出现的说话人验证中的过度训练问题。虽然各种说话人适应已经应用于语音识别,但这些方法尚未正式考虑在说话人验证。本文提出了最大后验(MAP)和最大似然线性回归(MLLR)相结合的说话人自适应方法,该方法已成功应用于语音识别,并应用于说话人验证。我们的目标是通过研究说话人对说话人建模的有效适应来纠正小的训练数据问题。实验结果表明,使用加权MAP和MLLR自适应的说话人验证系统比不自适应的传统说话人模型性能提高了5倍。从这些结果中,我们发现说话人自适应方法即使在只有少量训练数据可用于说话人验证时也能取得明显更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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